Development of a Fuel Consumption Prediction Model Based on Machine Learning Using Ship In-Service Data

As interest in eco-friendly ships increases, methods for status monitoring and forecasting using in-service data from ships are being developed. Models for predicting the energy efficiency of a ship in real time need to effectively process the operational data and be optimized for such an applicatio...

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Main Authors: Young-Rong Kim, Min Jung, Jun-Bum Park
Format: Article
Language:English
Published: MDPI AG 2021-01-01
Series:Journal of Marine Science and Engineering
Subjects:
Online Access:https://www.mdpi.com/2077-1312/9/2/137
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spelling doaj-111402a95c8c40b7b58d48983faee6b32021-04-02T18:53:14ZengMDPI AGJournal of Marine Science and Engineering2077-13122021-01-01913713710.3390/jmse9020137Development of a Fuel Consumption Prediction Model Based on Machine Learning Using Ship In-Service DataYoung-Rong Kim0Min Jung1Jun-Bum Park2Department of Marine Technology, Norwegian University of Science and Technology, 7052 Trondheim, NorwayFaculty of Korea Institute of Maritime and Fisheries Technology, Busan 49111, KoreaDivision of Navigation Science, Korea Maritime and Ocean University, Busan 49112, KoreaAs interest in eco-friendly ships increases, methods for status monitoring and forecasting using in-service data from ships are being developed. Models for predicting the energy efficiency of a ship in real time need to effectively process the operational data and be optimized for such an application. This paper presents models that can predict fuel consumption using in-service data collected from a 13,000 TEU class container ship, along with statistical and domain-knowledge methods to select the proper input variables for the models. These methods prevent overfitting and multicollinearity while providing practical applicability. To implement the prediction model, either an artificial neural network (ANN) or multiple linear regression (MLR) were applied, where the ANN-based models showed the best prediction accuracy for both variable selection methods. The goodness of fit of the models based on ANN ranged from <inline-formula><math display="inline"><semantics><mrow><mn>0.9709</mn></mrow></semantics></math></inline-formula> to <inline-formula><math display="inline"><semantics><mrow><mn>0.9936</mn></mrow></semantics></math></inline-formula>. Furthermore, sensitivity analysis of the draught under normal operating conditions indicated an optimal draught of 14.79 m, which was very close to the design draught of the target ship, and provides the optimal fuel consumption efficiency. These models could provide valuable information for ship operators to support decision making to maintain efficient operating conditions.https://www.mdpi.com/2077-1312/9/2/137in-service dataship fuel consumptionmachine learningvariable selection
collection DOAJ
language English
format Article
sources DOAJ
author Young-Rong Kim
Min Jung
Jun-Bum Park
spellingShingle Young-Rong Kim
Min Jung
Jun-Bum Park
Development of a Fuel Consumption Prediction Model Based on Machine Learning Using Ship In-Service Data
Journal of Marine Science and Engineering
in-service data
ship fuel consumption
machine learning
variable selection
author_facet Young-Rong Kim
Min Jung
Jun-Bum Park
author_sort Young-Rong Kim
title Development of a Fuel Consumption Prediction Model Based on Machine Learning Using Ship In-Service Data
title_short Development of a Fuel Consumption Prediction Model Based on Machine Learning Using Ship In-Service Data
title_full Development of a Fuel Consumption Prediction Model Based on Machine Learning Using Ship In-Service Data
title_fullStr Development of a Fuel Consumption Prediction Model Based on Machine Learning Using Ship In-Service Data
title_full_unstemmed Development of a Fuel Consumption Prediction Model Based on Machine Learning Using Ship In-Service Data
title_sort development of a fuel consumption prediction model based on machine learning using ship in-service data
publisher MDPI AG
series Journal of Marine Science and Engineering
issn 2077-1312
publishDate 2021-01-01
description As interest in eco-friendly ships increases, methods for status monitoring and forecasting using in-service data from ships are being developed. Models for predicting the energy efficiency of a ship in real time need to effectively process the operational data and be optimized for such an application. This paper presents models that can predict fuel consumption using in-service data collected from a 13,000 TEU class container ship, along with statistical and domain-knowledge methods to select the proper input variables for the models. These methods prevent overfitting and multicollinearity while providing practical applicability. To implement the prediction model, either an artificial neural network (ANN) or multiple linear regression (MLR) were applied, where the ANN-based models showed the best prediction accuracy for both variable selection methods. The goodness of fit of the models based on ANN ranged from <inline-formula><math display="inline"><semantics><mrow><mn>0.9709</mn></mrow></semantics></math></inline-formula> to <inline-formula><math display="inline"><semantics><mrow><mn>0.9936</mn></mrow></semantics></math></inline-formula>. Furthermore, sensitivity analysis of the draught under normal operating conditions indicated an optimal draught of 14.79 m, which was very close to the design draught of the target ship, and provides the optimal fuel consumption efficiency. These models could provide valuable information for ship operators to support decision making to maintain efficient operating conditions.
topic in-service data
ship fuel consumption
machine learning
variable selection
url https://www.mdpi.com/2077-1312/9/2/137
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AT minjung developmentofafuelconsumptionpredictionmodelbasedonmachinelearningusingshipinservicedata
AT junbumpark developmentofafuelconsumptionpredictionmodelbasedonmachinelearningusingshipinservicedata
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